An Adaptive Autotuned Polynomial-Based Extended Kalman Filter for Sensorless Surface Temperature Estimation of Li-Ion Battery Cells

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Abstract

This paper proposes an adaptive filter for estimating the surface temperature of lithium-ion battery cells in real time. The proposed temperature sensorless method aims to achieve a highly accurate temperature estimation at a relatively low implementation cost. The method employs a system dynamic and measurement models derived using polynomial curve fitting and implemented in the proposed adaptive autotuned extended Kalman filter (AA-EKF). Derivation of the proposed technique followed by experimental verification are demonstrated.

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Elsergany, A. M., Hussein, A. A., Wadi, A., & Abdel-Hafez, M. F. (2022). An Adaptive Autotuned Polynomial-Based Extended Kalman Filter for Sensorless Surface Temperature Estimation of Li-Ion Battery Cells. IEEE Access, 10, 14038–14048. https://doi.org/10.1109/ACCESS.2022.3148281

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